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Maximum likelihood restoration and choice of smoothing parameter in deconvolution of image data subject to Poisson noise

机译:受泊松噪声影响的图像数据去卷积的最大似然恢复和平滑参数的选择

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摘要

Image degradation by blurring is a well-known phenomenon often described by the mathematical operation of convolution. Fourier methods are well developed for recovery, or restoration, of the true image from an observed image affected by convolution blur and additive constant variance Gaussian noise. One focus of this paper is to describe another statistical restoration method which is available when the image data exhibits Poisson variability. This is a common situation when counts of recorded activity form the image, as in medical imaging contexts. We apply Maximum Likelihood (ML) and Maximum Penalized Likelihood (MPL) procedures to deconvolve image data which has been degraded by blurring and Poisson variability in recorded activity. A second focus is formulation and comparison of automated selection procedure for regularization (smoothing) parameters in this context.
机译:由于模糊导致的图像退化是一种众所周知的现象,通常通过卷积的数学运算来描述。傅立叶方法已经很好地开发出来,可以从受卷积模糊和加性常数方差高斯噪声影响的观察图像中恢复或恢复真实图像。本文的重点是描述另一种统计恢复方法,该方法可在图像数据表现出泊松变异性时使用。当记录的活动计数形成图像时,这是一种常见情况,例如在医学成像环境中。我们应用最大似然(ML)和最大惩罚似然(MPL)程序对卷积的图像数据进行反卷积,该图像数据因记录的活动中的模糊和泊松变异性而退化。第二个重点是在这种情况下制定和比较用于正则化(平滑)参数的自动选择程序。

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